A plug-in algorithm to estimate Bayes Optimal Classifiers for fairness-aware binary classification has been proposed in (Menon & Williamson, 2018). However, the statistical efficacy of their approach has not been established. We prove that the plug-in algorithm is statistically consistent. We also derive finite sample guarantees associated with learning the Bayes Optimal Classifiers via the plug-in algorithm. Finally, we propose a protocol that modifies the plug-in approach, so as to simultaneously guarantee fairness and differential privacy with respect to a binary feature deemed sensitive.
翻译:在(Menon & Williamson, 2018年)中提出了估算贝耶斯最佳公平意识二进制分类的插件算法(Menon & Williamson, 2018年)。然而,尚未确立其方法的统计效率。我们证明插件算法在统计上是一致的。我们还得出了与通过插件算法学习贝亚斯最佳分类法有关的有限样本保障。最后,我们提出了一个修改插件方法的协议,以便同时保证公平和区别敏感二进制特征的隐私。